A method and system for measuring transferability of workers between and among occupations by means of the mathematical relationships between those occupations' key attributes, as defined by publicly available data on the competencies required as specified by a complete catalog of U.S. occupations known as O*NET. This method provides a concise, informative measurement for comparing the relative requirements of Abilities, Skills, Knowledge, and other relevant attributes of occupations, enabling users to gauge the feasibility of transferring workers from one occupation to another.

Patent
   8639547
Priority
Dec 28 2007
Filed
Mar 15 2013
Issued
Jan 28 2014
Expiry
Dec 29 2028

TERM.DISCL.
Assg.orig
Entity
Small
6
18
EXPIRED

REINSTATED
1. A computer-implemented method for measuring the transferability of workers between occupations comprising: using a computer to perform computations; performing mathematical computations on a set of numerical values, which indicate worker attributes required of individual workers who perform those occupations, to produce resulting values; and aggregating the resulting values into a single numeric value defining a feasibility of transferring workers from one occupation to another.
6. A computer-implemented method for measuring the transferability of workers between occupations comprising:
using a computer to perform computations;
entering into a matrix sets of scores for a selected worker attribute that are required for an occupation, the sets of scores for each attribute being one or more sets Sk consisting of Nk scores, where Skcustom characterxj (j=1, 2, . . . Nk);
in cases where there exist two or more equally-dimensioned sets of scores for a single worker attribute, then computing a product of selected scores, where the corresponding elements of the sets may be weighted unequally, for the attribute to produce a composite attribute value;
entering the composite attribute value into a matrix;
repeating the previous steps for each occupation in a set of occupations; and
computing a correlation coefficient for a pair of occupations by correlating the composite attribute values for a pair of occupations.
13. A computer-implemented method for computing a correlation coefficient for a pair of occupations as an indication of transferability of workers between the occupations comprising:
identifying a specific target occupation to be profiled;
identifying Subject Matter Experts (SMEs) for the specific target occupation to be profiled;
recruiting SME's as participants in a SME focus group;
identifying reference occupations having some characteristics in common with the target occupation;
choosing appropriate descriptors and elements comprising the descriptors and values of the elements to be profiled for the target job by the following steps with the input of the SME focus group:
a) selecting a first descriptor;
b) determining each element for the first descriptor;
c) determining a numerical element score for each element for the first descriptor based on corresponding level and importance scores for that element of reference occupations;
d) recording the element score for each element for the first descriptor; and
e) repeating steps a)-d) for each descriptor to be profiled for the target job;
entering the scores for each element of each descriptor for the target job into a database;
using a computer to perform computations;
selecting the pair of occupations;
for each occupation in a set of occupations:
entering into a matrix or database a set of scores for a selected individual worker attribute for an occupation, the set of scores for each attribute being one or more sets Sk consisting of Nk scores, where Skcustom characterxj (j=1, 2, . . . Nk);
computing, with the computer, a product of an importance score and a level score for the attribute to produce a composite attribute value;
entering the composite attribute value into the matrix;
computing the difference between the computed product for each attribute between any pair of occupations;
computing the sums of all differences between the computed product for each attribute between any pair of occupations to equal the total difference;
entering the total difference value into the matrix;
accessing, with the computer, data in the matrix;
computing, with the computer, a correlation coefficient for the pair of occupations by correlating the composite attribute value for the pair of occupations by the following formula:
Correl ( x , y ) = i N k { ( x i - μ x ) ( y i - μ y ) } [ i N k ( x i - μ x ) 2 i N k ( y i - μ y ) 2 ]
wherein: x and y represent two vectors in a set, Sk, of scores for the xth and yth occupations in a set of occupations; where both x and y run from 1 to N, where N is the number of occupations in the set of occupations and x and y are composite attribute values assigned to each occupation; k is a value indicating a level assigned to an individual worker attribute; xiax; yiay; i=1, 2, . . . Nk;
μ x = i N k { x i } N k
is the mean value of the x vector and
μ xy = i N k { y i } N k
is the mean value of the y vector
normalizing the correlation coefficients on a scale of 1 to 100;
adjusting the normalized correlation coefficients by
producing a ratio whereof the numerator is calculated as the sum of the differences between the members of each pair of the composite level-importance scores for two selected occupations, the two selected occupations being a source occupation and a destination occupation, for which the composite level-importance scores for the destination occupation exceed the composite level-importance scores for the source occupation, and the denominator is calculated as the raw sum of the composite level-importance scores of the destination occupation; and
adjusting the correlation coefficients, with the computer, for each composite attribute by averaging it with the produced ratios; and
producing a report of the correlation coefficients for all pairs of occupations in the set to indicate transferability of workers, indicated by a value of the correlation coefficients, between the occupations.
2. The method of claim 1, wherein the step of aggregating the resulting values further comprises performing basic statistical correlation between two sets of numerical values, which indicate required worker attributes, to produce a correlation coefficient for a pair of occupations, and further adjusting the correlation coefficient to account for an asymmetry of the feasibility of potential bilateral transfer of workers between the pair of occupations.
3. The method of claim 1, further comprising: retrieving from a database the sets of numerical values which indicate required worker attributes, and labor market data, the database being selected from the group consisting of the U.S. Department of Labor's Occupational Information Network (O*NET) database and a custom database which contains a range of required attributes for a range of occupations.
4. The method of claim 1, wherein the required worker attributes are selected from the group consisting of: abilities, skills, knowledge, interests, education and experience.
5. The method of claim 3, wherein each required attribute has a set of assigned scores included in the database which further define each attribute.
7. The method of claim 6, wherein the selected sets of scores for each composite attribute are the level and importance scores.
8. The method of claim 7, wherein computing the correlation coefficient of two data sets from two occupations is done by the following formula:
Correl ( x , y ) = i N k { ( x i - μ x ) ( y i - μ y ) } [ i N k ( x i - μ x ) 2 i N k ( y i - μ y ) 2 ]
wherein: x and y represent two vectors in a set, Sk, of scores for the xth and yth occupations in a set of occupations; where both x and y run from 1 to N, where N is the number of occupations in the set of occupations and x and y are values assigned to each occupation; k is a value indicating a level assigned to an individual worker attribute; xiax; yiay; i=1, 2, . . . Nk;
μ x = i N k { x i } N k
is the mean value of the x vector and
μ xy = i N k { y i } N k
is the mean value of the y vector.
9. The method of claim 8, wherein the correlation coefficients are normalized on a 1 to 100 scale.
10. The method of claim 8, wherein the correlation coefficient is adjusted by:
producing a ratio whereof the numerator is calculated as the sum of the differences between the members of each pair of the composite level-importance scores for two selected occupations, the two selected occupations being a source occupation and a destination occupation, for which the composite level-importance scores for the destination occupation exceed the composite level-importance scores for the source occupation, and the denominator is calculated as the raw sum of the composite level-importance scores of the destination occupation; and
adjusting the correlation coefficients for each composite attribute by averaging it with the produced ratios.
11. The method of claim 10, further comprising displaying the adjusted correlation coefficients in a graphical user interface on a computer.
12. The method of claim 11, further comprising downloading labor market information relevant to each selected occupation from a database and displaying the labor market information with the adjusted correlation coefficients with display options corresponding to specifications of an end user for statistical and analytical reporting on each occupation and occupation transfer selected for analysis.
14. The method of claim 13, wherein adjusting the normalized correlation coefficient by the formula (w1*NORMCORRELd+w2*APC)/(w1+w2) wherein:
i. the source occupation is that from which it is proposed that one or more workers should be transferred;
ii. the destination occupation is that to which said workers are to be transferred;
iii. A equals a total number of attributes for a descriptor “d”;
iv. N equals a number of positive differences, the number of attributes of the given descriptor “d” for which a standardized database score of the destination occupation exceeds a value of the same attribute for the source occupation;
v. P+ is a percent of differences that are positive, N/A expressed as a percent;
vi. NORMCORRELd equals a normalized simple correlation coefficient between the scores of the attributes in the source and destination occupations, computed for the descriptor;
vii. PC equals the “Proximity Coefficient” which is a ratio of a sum of the scores of the source occupation to a sum of the scores of the destination occupation, but only for those attributes for which the score of the destination occupation exceeds that of the source occupation;
viii. Δ equals 1−PC, 1 minus the Proximity coefficient;
ix. Ω equals 1−P+, 1 minus the percent of differences that are positive;
x. Γ equals Δ*Ω which is an addition to be made to PC;
xi. APC equals PC+Γ which is a Adjusted Proximity coefficient;
xii. w1 equals a positive numerical weight assigned by a using analyst to NORMCORRELd;
xiii. w2 equals a positive numerical weight assigned by the using analyst to APC; and
xiv. w1 may but need not necessarily equal w2.

This continuation-in-part application claims priority on application Ser. No. 13/327,320 filed Dec. 15, 2011 which is a continuation-in-part of application Ser. No. 12/318,374 filed Dec. 29, 2008 now U.S. Pat. No. 8,082,168 which claims priority on provisional patent application 61/006,196 filed on Dec. 28, 2007.

This invention is called TORQ—the Transferable Occupation Relationship Quotient. TORQ is a mathematical manipulation of Labor Market Information (LMI) and other data, making use of publicly and privately available databases of key data about workers and occupations in the United States. It responds to a pervasive and continual need among economic developers, workforce development professionals, educators, and others for a useful way to assess the feasibility of transferring from one occupation to another. This invention's method for achieving this measure of “transferability” is based on mathematical relationships, including, but not limited to, statistical correlation of the skills, abilities, knowledge, and other attributes that are vital to each occupation.

Characterizing and comparing the vital attributes of occupations has been an important part of the field of labor economics for many years. During the past decade, two major databases of occupational information have become the most widely known and used sources of occupation profiles and attribute comparison. Following are detailed descriptions of these two databases, which in turn are key information sources of TORQ, the invention described in this application. Additionally, several other systematic attempts have been made to approach the concept of occupational comparison and job transfer. The most significant of those efforts are described here.

O*NET

O*NET™ refers to the U.S. Department of Labor's Occupational Information Network. O*NET's taxonomy of occupations is an extension of the occupation labels developed by the Bureau of Labor Statistics' Standard Occupational Classification (SOC) system.

For example, as of late 2008, O*NET's database provided detailed data on 809 separate officially defined occupations. Each of these occupations is associated with a set of descriptors according to the O*NET Content Model, derived from detailed observation and analysis of job characteristics of each described occupation. O*NET's database is periodically reviewed and updated to include information on new and emerging occupations. The current version, as of late 2011, is O*NET 16.

The O*NET Content Model includes all six of the domains listed below, together with all of the descriptors there under which are associated with each of O*NET's listed occupations:

The information O*NET provides about each occupation is exhaustive and comprehensive. The multiple dimensions of occupational attributes cataloged by O*NET make the description of each occupation both extremely rich and highly complex. A table listing the major and minor components of the O*NET database and their hierarchical relationships is presented in FIG. 3.

Researchers attempting to make use of the O*NET database have been accordingly limited in their ability to embrace the entire set of data in several kinds of studies involving career transfer and career paths. Most efforts to make productive use of the O*NET database have only encompassed one or a few dimensions of O*NET occupational data, or have merely repackaged O*NET data verbatim within various graphic and/or tabular displays or reports.

WORKKEYS®

Another database of Skills and Abilities by occupation is provided by ACT, Inc. and which is known as WORKKEYS®. WORKKEYS provides a more concise set of groupings of Skills and Abilities—eight (8) groupings in all. Each of these categories—e.g. Applied Mathematics or Locating Information—is rated on a 0-7 scale. Like O*NET's occupational attributes, the information supplied by WORKKEYS is derived from a system of job profiling based on detailed observation and interviewing.

The major advantage of WORKKEYS is that it also features a worker assessment component, whereby individuals take tests to determine their personal skill levels in each of the crucial WORKKEYS dimensions. This component is highly useful to business recruiters and workforce and human resource professionals wishing to match individuals to job opportunities. The combination of career-to-career comparison and individual-to-career comparison has made WORKKEYS a preferred database for occupational information among the world of workforce development, despite the relative thinness of its occupational information compared to O*NET.

Transferable Skills and Gap Analysis

The concept of “transferable skills” has been the subject of a great deal of research and exploration among labor economists as well as among workforce and economic developers. From the workforce development standpoint, evaluating transferable skills has long been the concern of those tasked with finding new employment opportunities for displaced workers, whether individually or in the case of a mass layoff or plant closing. For economic developers, quickly assessing transferable skills present in a region's workforce is important to efforts to recruit and retain businesses.

Additionally, the interests of workforce development would be well served by a reliable method for assessing the skills present in a region's workforce. Much has been made lately of the importance of “skills gap analysis” as a tool for assessing the condition of local workforces, and preparing a region's workforce for 21st-century economy occupations. Most such efforts, however, have found that, while estimating shortages for individual occupations is relatively easy, given plentiful public employment information, it is much more difficult to assess the skills of an area's labor force in a similar way, absent an exhaustive community survey or other such expensive measures.

Career Ladders, Lattices, and Pathways

Related to the idea of skills transfer is the construction of networks that are variously known as career ladders, lattices, and/or pathways. These models of the interconnections between careers in similar fields or requiring similar Skill/Ability/Knowledge sets are designed for and used by guidance and employment counselors and human resources professionals to illustrate the possibilities offered by particular career and/or educational choices.

The various labels for these career maps imply different approaches to the network of career relationships. A career ladder indicates a more or less linear progression of education and experience in jobs of similar natures in the same or similar industries. A career lattice is a more inclusive set of occupations, based on relationships of skills, education levels, abilities, earnings, industries, and many other bases of comparison. A career path or pathway, then, describes any set of interconnected occupations within this larger career lattice.

It has historically been more difficult to construct a career lattice than a career ladder. The career path from a Certified Nursing Assistant to a Registered Nurse is relatively straightforward, but finding occupations with comparable attributes that might supply a need for skilled warehouse workers may be more difficult. Efforts to create career lattices based on observed O*NET or WORKKEYS attributes have been attempted, but none so far has taken a comprehensive view of these attributes with statistical rigor and precision that embraces the entire data set represented by either of these databases.

Competency Modeling

A close relative to the notion of career ladders and pathways is a product called a “competency model.” A U.S. Department of Labor-sponsored project called the “Competency Model Clearinghouse” has produced such models based on the Abilities, Skills, and Knowledge requirements of general employment in broad industry sectors and/or clusters, such as Information Technology, Advanced Manufacturing, and others.

These “competency models” consist of pyramidal representations of the varieties of Abilities, Skills, and Knowledge that are required for any occupation within a given industry sector or cluster. The bottom level of the pyramid contains the most basic “employability” attributes like “interpersonal skills” and “initiative.” Subsequent levels attain more and more specificity to the given industry, examining common knowledge bases required of all Information Technology professionals, for example. In the upper levels of these competency models, occupation-specific job requirements are quoted directly from O*NET.

These competency models do employ a systematic approach to their construction and definition, consisting of consultation with employers within the given industry for which the model has been constructed. This application, however, is by its nature more useful in a broader strategic sense than at the level of individual occupations. At the occupational level, competency models yield no more specific information than does raw O*NET data.

FIG. 1 is a flowchart describing the process by which data are obtained and transformed to compute and store values for the Transferable Occupation Relationship Quotient;

FIG. 2 is a flowchart describing the process of end user interface to retrieve information derived from the Transferable Occupation Relationship Quotient;

FIG. 3 is a detailed table listing the various dimensions of the Department of Labor's O*NET occupational database used to calculate the Transferable Occupation Relationship Quotient;

FIG. 4 is the percent of the original LV that has decayed after the passage of T years which are measured along the X axis;

FIG. 5 is the percent of the decayed value of LV that will be “restored” by the algorithm after the passage of V years on the job which are measured along the X axis; and

FIG. 6 is the numbers for Llo for the first five occupations in O*NET 16;

FIG. 7 is a gap analysis graph; and

FIG. 8 is a flowchart describing the Rapid Job Profiling Tool.

TORQ begins with the statistical principle of correlation, i.e. “a single number that describes the degree of relationship between two variables.” TORQ computations can be performed by means of a computer, software and a database where necessary.

Mathematically, a correlation is computed according to the following formula derived from the Web Center for Social Research Methods, where x and y are the two variables in question:

Correl ( X , Y ) = i N k { ( x i - μ x ) ( y i - μ y ) } [ i N k ( x i - μ x ) 2 i N k ( y i - μ y ) 2 ]
The ratio (Correl(X,Y)) produced by this formula is known as a correlation coefficient.

By applying this computation to the complete set of scores—that is, O*NET and WORKKEYS values for element “Levels” and “Importance” of Skills, Abilities, Knowledge, and all other attributes relevant to any two given occupations within the database, the first building block of the TORQ computation is obtained. The multiple dimensions of attribute values in the O*NET and WORKKEYS database (for example; Skills, Abilities, and Knowledge in O*NET or Applied Mathematics and Locating Information in WORKKEYS) each produce their own individual correlation coefficient. The resultant values produced by the correlation algorithm are normalized to a scale of 0 to 100.

Once the correlation coefficients are computed, the process of TORQ calculation continues with an adjustment step which incorporates measures of the individual gaps between all of the composite Level-Importance scores of the Abilities, Skills, and Knowledge attributes (or, as they are termed in O*NET the “elements”) for the pair of occupations being analyzed for which those scores for the destination occupation exceeds those for the source occupation. This aggregate measure is then used to adjust the previously calculated correlation coefficients in order to provide a more precise indication of the relationship between occupations and to create an accurate representation of the asymmetry of transfer between occupations.

The adjusted TORQ scores still take values from 0 to 100. A zero value indicates no significant congruence or lack thereof between occupations' Skills, Abilities, and/or Knowledge; and a value of 100 indicates total congruence. (Obviously, each occupation has a TORQ value of 100 relative to itself for all descriptors.)

It should be noted that TORQ values are calculated for each significant descriptor of occupational attributes being compared, i.e., for Abilities, Skills, Knowledge, etc. There is also a combined measure known as a “Grand TORQ,” which is obtained by taking a weighted average of all the TORQ values for all the individual descriptor categories measured. “Weighted average” indicates that the calculation of the Grand TORQ can be adjusted to reflect the user's sense of priorities concerning the attributes of each pair of occupations, based on a combination of the correlation coefficients described above.

The full articulation of the mathematical process of calculating TORQ follows below.

The following detailed account describes the procedural steps involved in calculating TORQ and user extraction of information from the TORQ database.

Computation and Creation of the TORQ Database (FIG. 1)

101. Acquire O*NET Data for Each Occupation

The process begins with the acquisition of current occupational profile data from the Department of Labor's online O*NET database (or WORKKEYS or a comparable substitute should O*NET data become unavailable at some point).

102. Load complete Set of O*NET Data for Each Occupation into Database

These data are then loaded into a database management program for further manipulation. The current database type for TORQ uses the Structured Query Language (SQL). Each occupation in this database is re-indexed according to a simple set of Occupation Numbers (OCCNOs).

103. Select Attribute Dimensions for Entry into TORQ Calculation Matrices

Each occupational descriptor (e.g. Skills) is selected individually, and scores for both Level and Importance for each element within the given descriptor (e.g. “Active Listening” within Skills) are entered. The current active descriptors for TORQ calculation include Abilities, Skills, and Knowledge. Other descriptors may be used to create TORQ calculation matrices as well, in like fashion.

104. Multiply Level and Importance Scores for All Elements in Each Descriptor

Within each descriptor, the product of each element's Importance and Level scores is calculated, creating a “Combined Multiplicative Descriptor” (or CMD”) of for each element within the context of each occupation.

105. Create the TORQ Calculation Matrices

In every descriptor (e.g. Skills) a separate calculation matrix is created, which consists of the CMD scores produced by the multiplication in step (4). Each matrix contains the complete set of these composite scores for every occupation in two dimensions, to allow direct comparison of any occupation with any other. Thus, the dimension of a given descriptor matrix is n×m where n=the number of occupations in the current version of the O*NET database and m=number of individual elements in the given descriptor dimension.

106. Correlate Scores Across All Pairs of Occupations

Then, for every one of these calculation matrices, the correlation process F1 is applied to produce a correlation coefficient.

107. Normalize Correlation Coefficients

Each resulting correlation coefficient is then normalized to a 0 to 100 scale via a linear or other mathematical transformation. This resulting normalized coefficient is the first primary component of the Transferable Occupation Relationship Quotient (TORQ), but this alone does not comprise the final TORQ value.

108 and 109. Refine TORQ Value Through Systematic Evaluation of Gaps

The adjustment of the final TORQ value incorporates measures of the individual gaps between all of the composite Level-Importance scores of the Abilities, Skills, and Knowledge elements for the pair of occupations being analyzed. For this purpose, a second type of “cross” Composite Muliticative Descriptor is computed which we designate as CMDTF and which is computed in the following way:

Consider an occupation from which the transfer is to be made and term that the “FROM” occupation. Consider, also, the occupation to which the transfer is to be made and term that the “TO” occupation. The CMDTF is computed by multiplying the Importance score of the TO occupation times the Level score of the FROM occupation.

For each element, the sum of the differences between the conventional CMD scores for the TO occupation and the CMDTF relevant to the two occupations. However, this summation is made only in those cases for which the CMD for the TO occupation exceeds that of the CMDTF. The sum of those differences as so computed is then divided by the sum of CMD for the TO occupation. This aggregate measure (i.e., the ratio produced as just described) is then used to adjust the previously calculated correlation coefficients. This adjustment makes the TORQ value more accurate and useful in at least two important ways:

Separately, other labor market information (LMI) is downloaded and stored, and catalogued by the OCCNO of each occupation, to provide matches for each occupation in the TORQ database. This LMI set includes such indicators as prevailing median wages for occupations, estimates of current and projected future regional employment in each occupation, and a wide variety of other information at the national, state, and region-specific levels.

The scope and variety of LMI included in these datasets is determined partially by the set of end users making use of TORQ, and their geographic areas of interest. Currently TORQ uses LMI databases from the national Occupation and Employment Survey (OES) for detailed current information, and state and local information supplied by clients at those levels for purposes of maximum local relevance and the provision of employment projections for estimates of future occupational change.

111. Create TORQ Master Database

Once calculated, TORQ values for every available pair-wise combination of occupations, along every comparable attribute set (e.g. Abilities, Skills, Knowledge, etc.), are stored in a complete database which also contains the catalogued accompanying LMI values for each OCCNO-listed occupation.

112. Update Calculations and LMI

Periodically, updates are supplied to the data upon which TORQ relies for calculation of TORQ values itself—i.e. new editions of O*NET—and for the labor market information which accompanies the occupations in this database. These data sources are monitored regularly and used to refresh the TORQ database of occupational information whenever the source data are renewed. As of the filing of this patent application, TORQ uses values from O*NET version 15, pending the inventor's review of possible irregularities in the new O*NET version 16 released in 2011. Also, new state and sub-state-level clients supply current, local relevant labor market information to use with their own TORQ operations—supplied through the TORQ online user interface.

End User Retrieval of TORQ Database Information (FIG. 2)

201. End User Interactive Access

An end user accessing the TORQ database interacts with it through a front-end software application. This application currently takes the form of a Web-based interface, customized for use by different types of users, which can access TORQ database information over the Internet via a central server which stores and updates TORQ data.

202. Begin User Loop

This begins the sequence of activity for any analytical exercise within the TORQ interactive system.

203. User Actions Querying TORQ Database

This end user application allows the user to query the TORQ database for TORQ values based on pairs of occupations, and on analysis of the TORQ relationships between one occupation and a number of promising alternatives for transfer, via various major tools and sections of the online TORQ user interface. Users may also adjust the output from the database upon the basis of controls for the sensitivity of data to the user's specified criteria. Different types of users will have access to different sets of data controls, depending on the kinds of labor market information relevant to their interests. (A labor economist, for example, may make use of a wider range of statistical sensitivity controls than a career counselor, and might make use of data tools more relevant to long-term strategic analysis than immediate tactical transfer options.)

204. TORQ System Database Query and Report Generation

After receiving instructions for data retrieval and sensitivity controls, the TORQ database produces a report of TORQ values and all specified LMI for the occupations and other data input by the end user.

205. Display Results of Query and LMI Analysis

This report is displayed on the user's screen, in a format which can be printed, saved, etc. according to the user's preference.

206. User Hard Copy Output Generation

The user may choose to produce a hard copy of the output generated by the TORQ system, which may be done in a variety of ways.

207 and 208. Repeat Analysis and User Logoff

The querying and reporting process can be repeated for as many iterations and variations on analysis as the user prefers before ending the user loop.

Contents of the O*NET Database Used by TORQ (FIG. 3)

This figure describes the major portions of the O*NET spectrum of occupational information and their various subdivisions and data contents:

Domains (301): Describes the “domain” of occupational information to which various sets of attributes belong. (This corresponds with the O*NET list of domains cited above in the “Background Art” section.)

Descriptors (302): This lists the sets of major groupings of occupational attributes within each domain.

Elements (303): Descriptions of the various subdivisions of information within each “Descriptor” group. These include:

Data Entries (304): Descriptions of the type of data reported by O*NET within each “Descriptor” group. These include:

Notes re: O*NET 12 (305): Pertains to the status of each data component in the developing new release of the O*NET database, which will form the updated and expanded library of information for TORQ computation upon its release. (As previously noted, TORQ is designed to runs on the most recent version of the O*NET database, but is not limited to the O*NET database.) A further distinguishing characteristic of TORQ is that it allows each group of users (“clients”) to use databases of its own choice. For example, one client group could prefer that its TORQ results should be computed using O*NET 15 while another would prefer results from O*NET*16.

Articulation of Mathematical TORQ Calculation Process

The full process of mathematical computation of the Transferable Occupation Relationship Quotient is articulated below. This process provides the mathematical basis for component (106) of FIG. 1, the mathematical correlation process that feeds the initial TORQ computation flow chart.

Definitions of Symbols:

V denotes the sequential number of the most current version of the O*NET database. As explained before, TORQ seeks to use the latest version O*NET. The Examples below use O*NET 12 so the value of V is 12.

Symbols and Definitions for Occupations:

Ov equals the number of occupations for which data are supplied in the vth version of the O*NET database. Circa late 2007, Ov≡O12.

O12=801

OCCNOOv denotes the occupation with “Occupation Number” (or OCCNO) in Ov and. Its value goes from 1 to Ov.

For each descriptor dDvεDv, (d=1, 2, . . . , v,M),∃ a set of elements which represent attributes of that descriptor. For example, for the descriptor called “Abilities” in O*NET12, there exist 52 elements with data for scores beginning with “Oral Comprehension” and continuing with “Written Comprehension,” “Oral Expression” and so on for 49 more elements.

For each element in each descriptor, there exists one or more sets Sk consisting of Nk scores where Skcustom characterxi, (i=1, 2, . . . , Nk).

To illustrate, in O*NET12, for each of the elements for Abilities, Skills and Knowledge there exist two sets of scores, one for “Level” and the second for “Importance.”

Additionally, by multiplying the values for Level and Importance we obtain a third measure which we term the “Combined Multiplicative Descriptor” or “CMD” for each element.

And therefore, where:

OCCNO=1 which translates to “Chief Executives”

v=12;

d=Abilities;

k=Level

i=1 meaning “Oral Comprehension”

So, x1εSk is equal to 5.50 which is the Level score for Oral Comprehension for Chief Executives in O*NET12.

Similarly, when k=Importance, we have x1εSk equal to 4.92 which is the Importance score for Oral Comprehension for Chief Executives in O*NET 12.

Finally, for the “Combined Multiplicative Descriptor” or “CMD” for Oral Comprehension for Chief Executives in O*NET 12, we compute the product of Level times Importance. For the element of Oral Comprehension for Chief Executives in O*NET 12, we obtain value for the CMD as 5.50 times 4.92=27.06.

Finally, as previously noted, for each pair of TO-FROM occupations, we also compute a “cross” composite multicative descriptor which we denote as CMDTF. The CMDTF is computed by multiplying the Importance score of the TO occupation times the Level score of the FROM occupation. Note that TORQ correlation analysis employs only the conventional CMD. The CMDTF is used only in the “gap analysis” previously described.

To illustrate the computation of the CMDTF consider a contemplated transfer FROM a Funeral Director (O*NET code 11-9061.00) to Chief Executive (O*NET code 11-1011.00). In O*NET 12, the Oral Comprehension Level score for Funeral Director is 3.88 while the Oral Comprehension Importance score for Chief Executive is 4.92. Therefore, the CMDTF in this case would be 3.88 times 4.92=19.09. Incidentally, the “gap” between the conventional CMD for Chief Executive's Oral Comprehension (i.e., 27.06) and the CMDTF in this case would be 7.97. That would indicate that Funeral Directors' Oral Comprehension, as viewed through the “eyes” of Chief Executive's Importance comes up considerably short. It is this type of “gap” measure that the TORQ algorithm employs to adjust the correlation coefficients between the conventional CMDs of the two occupations.

Working with Matrices from O*NET in TORQ

Recall that for each element in each descriptor, there exists one or more sets Sk consisting of Nk scores where Skcustom characterxj, (j=1, 2, . . . , Nk). In most cases, there are two such sets for each descriptor (Level and Importance). The number of scores in the O*NET database is very large and TORQ builds two 801×801 matrices for each descriptor Sk and for each type of data provided (e.g., Level, Importance, etc.). To illustrate, among the matrices from O*NET12, TORQ builds these:

For every descriptor or CMD, dDvεDv, let X and Y represent two vectors in a set, Sk, of scores for the xth and yth occupations where both x and y run from 1 to Ov (which, for O*NET12 would be from 1 to 801). Then the Correlation Coefficient for that pair [abbreviated Correl(X,Y)] is computed in TORQ as follows:

Correl ( X , Y ) = i N k { ( x i - μ x ) ( y i - μ y ) } [ i N k ( x i - μ x ) 2 i N k ( y i - μ y ) 2 ]
Where:
xiεX and yiεY, i=1 . . . , Nk and (j=1, 2, . . . , Nk);

μ x = i N k ( x i ) N k
(i.e., the mean value of the X vector) and

μ y = i N k ( y i ) N k
(i.e., the mean value of the Y vector).

For each descriptor or CMD, dDvεDv, for which scores exist in the current version of the O*NET database (for Level, Importance, or other data value), TORQ computes correlation coefficients as just described for every pair of the Ov occupations. These correlation coefficients may range in value from −1 to +1.

Normalization of the Correlation Coefficients

TORQ “normalizes” each correlation coefficient by multiplying it by 100 (or otherwise linearly transforming it). For each descriptor, therefore, the computation and this normalization produce a square matrix of correlation coefficients of dimension 801×801 that is symmetric around its diagonal axis.

For example, if a given user of TORQ based on ONET12 preferred to analyze only the descriptors of Abilities, Skills and Knowledge (rather than the entire gamut of O*NET descriptors) then there would be nine matrices of correlation coefficients, each of dimension of 801×801. They would be for the Level and Importance of the three descriptors selected for analysis plus an additional matrix of CMD correlation coefficients corresponding to the original three descriptors. Obviously, the number of matrices of correlation coefficients increases in proportion to the number of descriptors chosen for analysis.

Illustration of TORQ Calculation Based on Existing O*NET Occupational Attributes

To illustrate the procedure described above, consider how the Abilities Importance correlation coefficient is computed for one pair of occupations, namely Cardiovascular Technologists and Technicians (SOC 29-2031.00) and Registered Nurses (29-1111.00).

Step 1: Download the latest O*NET database which, for the purposes of this illustration, is O*NET 12.0 Database and is to be found on the Internet. Store these data in a local database editor and/or spreadsheet program.

Step 2: Retrieve the Abilities Importance and Level Scores for both occupations.

Step 3: Standardize the original Data Value according to the following formula as provided by O*NET.

The Level and Importance scales each have a different range of possible scores. Ratings on Level were collected on a 0-7 scale, ratings on Importance were collected on a 1-5 scale, and ratings on Frequency were collected on a 1-4 scale. To make reports generated by O*NET Online more intuitively understandable to users, descriptor average ratings were standardized to a scale ranging from 0 to 100. The equation for conversion of original ratings to standardized scores is:
S=((O−L)/(H−L))*100
where S is the standardized score, O is the original rating score on one of the three scales, L is the lowest possible score on the rating scale used, and H is the highest possible score on the rating scale used. For example, an original Importance rating score of 3 is converted to a standardized score of 50 (50=[[3−1]/[5−1]]*100). For another example, an original Level rating score of 5 is converted to a standardized score of 71 (71=[[5−0]/[7−0]]*100).

In this case, S=((Original Data Value−1)/4. The original and standardized values for the Importance Scores of the various Abilities element of O*NET coded occupations 29-1111.00 and 29-2031.00 are shown in the following table:

O*NET O*NET
Occupation Element Standard-
Code Code Element Title Original ized
29-1111.00 1.A.1.a.1 Oral Comprehension IM 4.25 81.3
Written
29-1111.00 1.A.1.a.2 Comprehension IM 3.88 72.0
29-1111.00 1.A.1.a.3 Oral Expression IM 4.63 90.8
29-1111.00 1.A.1.a.4 Written Expression IM 4 75.0
29-1111.00 1.A.1.b.1 Fluency of Ideas IM 2.5 37.5
29-1111.00 1.A.1.b.2 Originality IM 2.38 34.5
29-1111.00 1.A.1.b.3 Problem Sensitivity IM 4.75 93.8
29-1111.00 1.A.1.b.4 Deductive Reasoning IM 4 75.0
29-1111.00 1.A.1.b.5 Inductive Reasoning IM 4.25 81.3
29-1111.00 1.A.1.b.6 Information Ordering IM 3.5 62.5
29-1111.00 1.A.1.b.7 Category Flexibility IM 3 50.0
29-1111.00 1.A.1.c.1 Mathematical IM 1.88 22.0
Reasoning
29-1111.00 1.A.1.c.2 Number Facility IM 1.63 15.8
29-1111.00 1.A.1.d.1 Memorization IM 2.63 40.8
29-1111.00 1.A.1.e.1 Speed of Closure IM 3 50.0
29-1111.00 1.A.1.e.2 Flexibility of Closure IM 3.25 56.3
29-1111.00 1.A.1.e.3 Perceptual Speed IM 2.63 40.8
29-1111.00 1.A.1.f.1 Spatial Orientation IM 1.38 9.5
29-1111.00 1.A.1.f.2 Visualization IM 1.75 18.8
29-1111.00 1.A.1.g.1 Selective Attention IM 3.5 62.5
29-1111.00 1.A.1.g.2 Time Sharing IM 3.25 56.3
29-1111.00 1.A.2.a.1 Arm-Hand Steadiness IM 3 50.0
29-1111.00 1.A.2.a.2 Manual Dexterity IM 3.13 53.3
29-1111.00 1.A.2.a.3 Finger Dexterity IM 2.38 34.5
29-1111.00 1.A.2.b.1 Contol Precision IM 2.25 31.3
29-1111.00 1.A.2.b.2 Multilimb IM 2.25 31.3
Coordination
29-1111.00 1.A.2.b.3 Response Orientation IM 1.88 22.0
29-1111.00 1.A.2.b.4 Rate Control IM 1.13 3.3
29-1111.00 1.A.2.c.1 Reaction Time IM 2 25.0
29-1111.00 1.A.2.c.2 Wrist-Finger Speed IM 1.25 6.3
29-1111.00 1.A.2.c.3 Speed of Limb IM 1.88 22.0
Movement
29-1111.00 1.A.3.a.1 Static Strength IM 2.38 34.5
29-1111.00 1.A.3.a.2 Explosive Strength IM 1.38 9.5
29-1111.00 1.A.3.a.3 Dynamic Strength IM 1.75 18.8
29-1111.00 1.A.3.a.4 Trunk Strength IM 3.38 59.5
29-1111.00 1.A.3.b.1 Stamina IM 2.63 40.8
29-1111.00 1.A.3.c.1 Extent Flexibility IM 2.75 43.8
29-1111.00 1.A.3.c.2 Dynamic Flexibility IM 1.13 3.3
29-1111.00 1.A.3.c.3 Gross Body IM 2.63 40.8
Coordination
29-1111.00 1.A.3.c.4 Gross Body IM 1.63 15.8
Equilibrium
29-1111.00 1.A.4.a.1 Near Vision IM 3.63 65.8
29-1111.00 1.A.4.a.2 Far Vision IM 2.13 28.3
29-1111.00 1.A.4.a.3 Visual Color IM 2.13 28.3
Discrimination
29-1111.00 1.A.4.a.4 Night Vision IM 1 0.0
29-1111.00 1.A.4.a.5 Peripheral Vision IM 1 0.0
29-1111.00 1.A.4.a.6 Depth Perception IM 2.13 28.3
29-1111.00 1.A.4.a.7 Glare Sensitivity IM 1 0.0
29-1111.00 1.A.4.b.1 Hearing Sensitivity IM 2 25.0
29-1111.00 1.A.4.b.2 Auditory Attention IM 2.38 34.5
29-1111.00 1.A.4.b.3 Sound Localization IM 1 0.0
29-1111.00 1.A.4.b.4 Speech Recognition IM 4 75.0
29-1111.00 1.A.4.b.5 Speech Clarity IM 4 75.0
29-2031.00 1.A.1.a.1 Oral Comprehension IM 4 75.0
29-2031.00 1.A.1.a.2 Written IM 3.38 59.5
Comprehension
29-2031.00 1.A.1.a.3 Oral Expression IM 3.88 72.0
29-2031.00 1.A.1.a.4 Written Expression IM 3.25 56.3
29-2031.00 1.A.1.b.1 Fluency of Ideas IM 2.88 47.0
29-2031.00 1.A.1.b.2 Originality IM 3 50.0
29-2031.00 1.A.1.b.3 Problem Sensitivity IM 4 75.0
29-2031.00 1.A.1.b.4 Deductive Reasoning IM 3.63 65.8
29-2031.00 1.A.1.b.5 Inductive Reasoning IM 3.63 65.8
29-2031.00 1.A.1.b.6 Information Ordering IM 3.63 65.8
29-2031.00 1.A.1.b.7 Category Flexibility IM 3.13 53.3
29-2031.00 1.A.1.c.1 Mathematical IM 2.63 40.8
Reasoning
29-2031.00 1.A.1.c.2 Number Facility IM 2.63 40.8
29-2031.00 1.A.1.d.1 Memorization IM 2.75 43.8
29-2031.00 1.A.1.e.1 Speed of Closure IM 2.75 43.8
29-2031.00 1.A.1.e.2 Flexibility of Closure IM 3.13 53.3
29-2031.00 1.A.1.e.3 Perceptual Speed IM 3.5 62.5
29-2031.00 1.A.1.f.1 Spatial Orientation IM 1.13 3.3
29-2031.00 1.A.1.f.2 Visualization IM 2.88 47.0
29-2031.00 1.A.1.g.1 Selective Attention IM 3.38 59.5
29-2031.00 1.A.1.g.2 Time Sharing IM 3 50.0
29-2031.00 1.A.2.a.1 Arm-Hand Steadiness IM 2.88 47.0
29-2031.00 1.A.2.a.2 Manual Dexterity IM 2.63 40.8
29-2031.00 1.A.2.a.3 Finger Dexterity IM 3 50.0
29-2031.00 1.A.2.b.1 Contol Precision IM 2.88 47.0
29-2031.00 1.A.2.b.2 Multilimb IM 2.63 40.8
Coordination
29-2031.00 1.A.2.b.3 Response Orientation IM 2.38 34.5
29-2031.00 1.A.2.b.4 Rate Control IM 1.88 22.0
29-2031.00 1.A.2.c.1 Reaction Time IM 2.38 34.5
29-2031.00 1.A.2.c.2 Wrist-Finger Speed IM 1.88 22.0
29-2031.00 1.A.2.c.3 Speed of Limb IM 2 25.0
Movement
29-2031.00 1.A.3.a.1 Static Strength IM 2.38 34.5
29-2031.00 1.A.3.a.2 Explosive Strength IM 1.13 3.3
29-2031.00 1.A.3.a.3 Dynamic Strength IM 1.88 22.0
29-2031.00 1.A.3.a.4 Trunk Strength IM 2.13 28.3
29-2031.00 1.A.3.b.1 Stamina IM 2.25 31.3
29-2031.00 1.A.3.c.1 Extent Flexibility IM 2.25 31.3
29-2031.00 1.A.3.c.2 Dynamic Flexibility IM 1 0.0
29-2031.00 1.A.3.c.3 Gross Body IM 2.25 31.3
Coordination
29-2031.00 1.A.3.c.4 Gross Body IM 2 25.0
Equilibrium
29-2031.00 1.A.4.a.1 Near Vision IM 3.88 72.0
29-2031.00 1.A.4.a.2 Far Vision IM 2.88 47.0
29-2031.00 1.A.4.a.3 Visual Color IM 3 50.0
Discrimination
29-2031.00 1.A.4.a.4 Night Vision IM 1.13 3.3
29-2031.00 1.A.4.a.5 Peripheral Vision IM 1.13 3.3
29-2031.00 1.A.4.a.6 Depth Perception IM 2.63 40.8
29-2031.00 1.A.4.a.7 Glare Sensitivity IM 1 0.0
29-2031.00 1.A.4.b.1 Hearing Sensitivity IM 2.88 47.0
29-2031.00 1.A.4.b.2 Auditory Attention IM 2.63 40.8
29-2031.00 1.A.4.b.3 Sound Localization IM 1.13 3.3
29-2031.00 1.A.4.b.4 Speech Recognition IM 3.75 68.8
29-2031.00 1.A.4.b.5 Speech Clarity IM 3.88 72.0

Step 4: Compute the mean values of the Standardized Values for each occupation and find their product.

Thus, taking as Standardized Values for Cardiovascular Technologists and Technicians (SOC 29-2031.00) as the X vector, we compute the mean value of the X vector:

μ x = i 52 ( x i ) 52 to be 46.4

And, taking Registered Nurses (SOC 29-1111.00) as the Y vector, we compute the mean value of the Y vector as:

μ y = i 52 ( y i ) 52 to be 39.1 .

Step 5: Compute the variations of the values from their means and then, one by one, multiply the two variations, and finally sum their products.
Σi=152{(xi−μx)(yi−μy)}=24,035

Step 6: Compute the sums of the squared variations of the values from their means, multiply the two sums, and then extract the square root of the product.
√{square root over ((Σi52(xi−μx)2)(Σi52(yi−μy)2))}{square root over ((Σi52(xi−μx)2)(Σi52(yi−μy)2))}=√{square root over ((22,689.58times34,118.43))}=27,823.24

Step 7: Compute the correlation coefficient which is the quotient of the values obtained in steps 5 and 6, i.e.,
CORREL(X,Y)=24,035/27,823.24=0.8638

Step 8: “Normalize” the correlation coefficient by multiplying it by 100 to produce the TORQ for Abilities Importance for these two occupations.

NORMCORREL Importance Abilities = 100 times 0.8638 = 86.38
Comments on the Example:
Often, during the application of TORQ to problem situations, the occupation represented by the X vector is taken to mean the occupation from which workers could be transitioned to the occupation represented by the Y vector. In case, the analysis would be that of examining the congruence of Cardiovascular Technologists and Technicians (SOC 29-2031.00) and Registered Nurses (29-1111.00) with the idea of advancing the former (whose values are represented by the X vector) into the latter (whose values are represented by the Y vector).

NORMCORREL Importance Abilities = 100 times 0.8286 = 82.86 .

Certain Abilities scores may be key limiting factors for the feasibility of occupational transfer. Some Abilities, unlike most Skills and Knowledge, are simply inherent qualities that are not responsive to training, education, or other adjustments. Some jobs require certain Abilities that constitute critical limiting factors. (The example of night vision for truck drivers is one such ability.) To generate a useful comparison between occupations, then, these limiting factors must be taken into account—in other words, these specific limiters must be observed along with the TORQ values in order to determine the utility of TORQ in assessing the feasibility of job transfer. (An individual accountant may have perfectly good night vision, rendering the comparison between the typical abilities of an accountant and a truck driver in this dimension irrelevant to the feasibility of his transition to become a truck driver.) A further dimension of the reporting systems associated with TORQ is in development to “flag” these limiting factors and screen them in a way that makes TORQ analysis more nuanced and more useful.

A related the point above—TORQ analysis generally yields the most useful results in job comparisons where relative Skills and Knowledge levels matter. Abilities, as already noted, tend to be less flexible for individuals than levels of skill and knowledge. (For example, doctors in general practice and those who perform surgery may have very closely comparable Skills, Knowledge, and even education levels. Some of the only vital distinguishing factors between these two may happen to be in the Level and Importance of manual dexterity required of a surgeon. Abilities TORQ analysis might therefore show that the feasibility of transfer between the general practitioner and the surgeon may be low, whereas an individual general practitioner may have all the manual dexterity she needs to facilitate a job change to surgeon. The same kind of comparison would hold true for two occupations in which Skills and Knowledge levels are comparably very low. Therefore, Skills and Knowledge TORQs are more useful to those seeking to assess training needs for job transfer, for reasons ranging from relocation of dislocated workers to recruitment of new job candidates from an existing labor pool.

Three Additional Analysis Steps

For more accurate calculations, additional analysis steps may be performed to the general TORQ analysis.

1) A method for using a computer to adjust the occupational attribute values imputed to an individual who has experience in one or more occupations based on the time he or she performed the occupation and the time elapsed since he or she worked in such an occupation;

2) A method for statistical analysis of the combined occupational attribute values of multiple past occupations, and for comparison of these composite attribute values with the attribute values of any other occupation; and

3) A method for the statistical evaluation of groups of workers based on combining, evaluating, and ranking the skill sets and other relevant attributes of all of the workers in a geographic area, industry, or other grouping, based on the occupations that these workers currently hold, or have previously held, or are projected to hold at some future time.

Analysis 1

A method for using a computer to statistically evaluate a set of occupational skills imputed to an individual who has experience in one or more occupations, taking into account changes in these skills as a result of time spent in the occupation or time elapsed since performing the occupation.

Individuals who have performed a range of tasks and work activities in a given occupation may be assumed to be competent in the skills required to do these tasks or activities. This assumed competency may decline over time if the individual ceases to perform the occupation, either because the competencies required for the occupation may change (for example, a heart surgeon may need to learn to use laser “scalpels” that were unknown during his or her medical residency) or because the individual may forget specific knowledge that is important to performance on the job (e.g., translating into a foreign language), or because the individual's abilities may decline with age (e.g., a driver whose night vision deteriorates). The rate at which such declines occur may vary based on factors such as how long the individual has held a job (and thereby learned the skills needed for the job), or how fast technology is changing in a given occupation. The total decline in an occupational competency may vary based on how long it has been since the individual left the occupation. The method described below integrates and statistically analyzes the impacts of these time factors.

Analysis 2

A method for statistical analysis of the combined occupational attribute values of multiple past occupations, and for comparison of these composite attribute values with the attribute values of any other occupation.

During the course of a lifetime, individuals may hold many jobs in various occupations that require different competencies and worker attributes. This multi-occupational history can be statistically analyzed and evaluated to provide a composite description of the occupational attributes that may be imputed to the individual based on his or her entire work history. This composite method involves selecting the highest of the adjusted values for an occupational attribute for each occupation an individual may have held.

A Mathematical Description of Analyses 1 and 2

Analysis 1 (which adjusts occupational attribute values based on time in, or away from an occupation) can be combined with Analysis 2 (which evaluates multiple past occupations) to create a method that provides a more accurate statistical description of the occupational attributes possessed by individuals with a particular work history. These more accurate statistical descriptions of individual occupational attributes can be used to evaluate the feasibility of transfers by individuals into new occupations based on the combined skills they have acquired and retained from previous occupations.

As described below, a combination of Analyses 1 and 2 is applied to data from the US Department of Labor O*NET databases that describe the Knowledge, Skills and Abilities of each occupation. The statistical method described in Analyses 1 and 2 can be used to evaluate any set of occupational attributes from any source for which there exist data that are specific to a set of occupations and for which work history dates are available. For example, the method could be used to evaluate and adjust occupational attributes relating to scores on cognitive or other work-related tests (e.g., the WorkKeys™ tests from ACT, Inc.), responses to personality questionnaires, educational achievement measured by years in school, or other criteria that are deemed to relate to occupational performance.

Mathematical Steps for Analyses 1 and 2 Applied to O*NET Data

The algorithm described herein, when implemented on a computer, computes a Composite O*NET Profile (COP) of any individual based on his or her personal work history. Once so computed, an individual's COP is passed to the TORQ algorithm which treats the COP data values just as it would the data values of a standard O*NET™ occupation. For example, a “standard” occupation is an occupation present in the O*NET database, e.g., Chief Executives which bears the O*NET-SOC code of 11-1011.00. The result for an individual worker is a set of TORQ scores measuring the transferability of that worker to any standard O*NET occupation, based on the Knowledge, Skills and Abilities accumulated and retained in the course of his/her personal work history.

The O*NET database contains data on a large number of occupations. The circa November, 2011 version of the O*NET database is called O*NET 16. There exist 1,109 occupational codes and titles in O*NET 16. The database contains Data Values for 862 of these 1,109 occupations. Those data consist of multiple sets of worker characteristics such as Knowledge, Skills, Abilities, and others. Each of these worker characteristics is composed of a set of defined elements. For example, the O*NET worker characteristic category “Knowledge” currently consists of 32 separate elements or bodies of knowledge, such as “Computers and Electronics” or “Biology.” Similarly, the O*NET category for “Skills” includes 35 elements, such as “Active Learning” and “Programming,” while the category for “Abilities” currently includes 52 elements, such as “trunk strength” and “oral comprehension.” In the current O*NET 16 database, the worker characteristics categories of Knowledge, Skills and Abilities together include 119 elements.

Within the O*NET framework, each element of Knowledge, Skills, or Abilities is rated on two scales:

For most standard occupations in the O*NET database, there exist “Data Values” for these Level and Importance scales. In the cases of Knowledge, Skills and Abilities, each element of each occupation is assigned two data values, one each for the Level and Importance of this element that may be required to perform this occupation. They are defined as:

As noted above, the LV (Level) and IM (Importance) scales each have a different range of possible scores. Ratings on Level are rendered in O*NET originally on a 0-7 scale, ratings on Importance they are rendered originally on a 1-5 scale. To make reports generated by O*NET more intuitively understandable to users, these ratings may be standardized to a scale ranging from 0 to 100. The equation for conversion of original ratings to standardized scores is:
S=((O−L)/(H−L))*100
where S is the standardized score, O is the original rating score on an original scale, L is the lowest possible score on the rating scale used, and H is the highest possible score on the rating scale used. For example, an original Importance rating score of 3 is converted to a standardized score of 50 (50=[[3−1]/[5−1]]*100). For another example, an original Level rating score of 5 is converted to a standardized score of 71 (71=[[5−0]/[7−0]]*100).

The standardization equation provided here preserves the rank ordering and proportional positioning of Data Value scores. This is an essential attribute of any proper transformation. Let it be noted, however, that the COP algorithm described in this document works equally well with the original O*NET Data Value scores or with any transformation thereof. That means that the claim herein stands independently of any standardization or transformation of the original O*NET Data Value scores.

The Procedure and Algorithm of Computing a Composite O*NET Profile (COP)

TORQ's Composite Algorithm (CA”) is a method for building a set of occupational characteristics that reflect the “work history” of a specific individual. It does this by evaluating and amalgamating the sets of requirements (i.e., the various sets “R”) of all the occupations in the individual's work history.

Decay: In evaluating each of the elements, rlkεRk, attending a specific occupation, Aε0, it is necessary to determine the degree to which an individual's proficiency may have deteriorated over the time that has elapsed since the individual was last occupied in occupation A. Consequently the CA applies one of several proprietary “element decay factors” or “EDFs” to reflect this deterioration.

Restore: TORQs' CA recognizes merit in the old adage that “practice makes perfect.” That recognition underlies the “element restore factors” or “RSFs” that apply to each of the elements, rlkεRk, attending a specific occupation, Aε0. The RSFs are functions of the duration of time that the worker was occupied in each occupation in which he/she was employed for some specific period in the past. Within the CA, the RSFs operate to restore or recover some portion of the decay due to the application of the EDFs.

Aggregation and standardization: After the EDFs and RSFs have been applied to each of the elements, rlkεRk, that attend each of the occupations in the individual's work history, the modified elements are aggregated to form a standardized composite profile of occupational characteristics that reflect that work history.

Submission to TORQ: The composite profile for the individual worker, obtained via the steps just outlined, is submitted to the TORQ algorithm for analysis just as if it were a conventional occupation in the set O. The results obtained from that analysis, however, correspond much more closely to the attributes possessed by the individual than would be the case if only a single current or most recent occupation were the point of analytical departure.

O*NET or WorkKeys . . . or both? In the current TORQ application, the composite profiles are developed on the basis of the O*NET database. However, there is no reason why the same proprietary algorithm could not be employed using WorkKeys data. Since individual assessment is an important component of the WorkKeys methodology, the assessment route could be a more accurate path to a result to match the attributes of a specific individual. O*NET-based CA works in combination with WorkKeys job profiling and assessment in delivering powerful tools for use by HR and other hiring managers in both the private and public sectors.

Preparatory Step 1: Compute the “Decay Factors” for all Elements

This step of the algorithm is taken before any COPs are generated. It is taken only once “in the background” for each version of the O*NET database.

Determine the Decay Function (“E”) for each of the 119 elements that are scored in the O*NET database. For any given element the function is denoted generally as:
Elsls(T)

For example, if the data being analyzed were to comprise only Knowledge, Skills and Abilities, then n=(i+j+k)=52+35+32=119 in the current version of the O*NET database, i.e., O*NET16. However, this algorithm works for any data describing an attribute related to occupational performance that may change over time.

The function ƒls may be of any form including (without limiting the generality of the claim) linear, exponential, logarithmic, or the inverse of any of those. The determination of the form of the function ƒls and the values of any constants and parameters therein are determined by the application of expert analysis.

The logical purpose of developing the Decay Factors Els for all data values in all elements is to reflect either the erosion of the worker's competencies, e.g., skills, or the decline in the relevance of those skills because of changing tools or technology, either of which may occur when that worker has been away from a particular occupation for a given time period. The pace of such erosion may differ individually for each element.

A numerical example of the decay function may help to clarify.

Consider the “Level” of the element “Programming.”

Suppose that ƒls(T) takes the specific form of ƒls(T)=T0eλT which is a form familiar as that which describes the radioactive decay of an isotope over time.

Where T is elapsed time, and where

T0 is where elapsed time equals zero, and where

e denotes the natural logarithm, and where

λ is the “coefficient of decay.”

Suppose, further, that the coefficient of decay, λ, for Programming is taken to equal −0.09 Plugging those values into the equation ƒls(T)=LV0eλT gives a the set of computed values for Elsls(T) that are shown in FIG. 4: Graph 1. This graph shows the percent of the original LV that has decayed after the passage of T years which are measured along the X axis. From Graph 1, it is shown that, given the form of the function and the value of −0.09 assigned to λ (i.e., the “coefficient of decay”), half of the original LV score for Programming would have decayed in 7.70 years.
Preparatory Step 2: Compute the “Restore Factors” for all Elements and all Scale IDs

This step of the algorithm is taken before any COPs are generated. It is taken only once “in the background” for each version of the O*NET database.

Determine the Restore Function (“R”) for each data value for all elements. For any given element descriptor, the function “R” can be denoted generally as:
Rls=gls(V)
where V is a positive integer variable denote in time measured in days; and
where s denotes the element data value; and
where l=1 . . . n with n denoting the total number of all elements in the database being analyzed.

The function g may be of any form including (without limiting the generality of the claim) linear, exponential, logarithmic, or the inverse of any of those. The determination of the form of the function g and the values of any constants and parameters therein are determined by the application of expert analysis.

The logical purpose of developing the Restore Factors is to recognize and “give credit” to a worker for the proficiency developed by practicing a given occupation for a shorter or longer period of time. It recognizes the principle of “practice makes perfect.” The action of each Restore Factor “R” is to recover some of what has been lost by application of the Decay Function. The pace of such restoration may differ individually for each element.

A numerical example of the Restore Function may help to clarify.

Consider the “Level” of the element “Programming.”

Suppose that gls(V) takes the specific form of gls(V)=1−(V0÷βV)

Where V is duration of time working in an occupation, and where

V0 is where duration of time equals zero, and where

β is the “coefficient of restoration.”

Suppose, further, that the coefficient of restoration, β, for Programming is taken to equal 1.15

Plugging those values into the equation gls(V)=1−(V0÷βV) gives a the set of computed values for Rls=gls(V) that are shown in FIG. 5, Graph 2. This graph shows the percent of the decayed value of LV that will be “restored” by the algorithm after the passage of V years on the job which are measured along the X axis. From Graph 2, it is shown that, given the form of the function and the value of 1.15 assigned to β (i.e., the “coefficient of restoration”), half of the original amount of the decayed LV score would be “restored” in 4.96 years.

These computed values for Rls are stored in TORQ's computerized database for later reference.

Application Step 1: Input the Individual's “Work History.”

This step is performed each tune that an individual worker employs TORQ and wishes it to incorporate his/her COP, i.e., to recognize the competencies that he/she may have accumulated while performing more than a single occupation.

To compute an individual's COP, the algorithm requires the input of that individual's “Work History.” The Work History comprises a listing of one or more occupations that the individual holds now or has held in the past.

The algorithm requires that the individual should enter at least one such occupation in his/her work history. Typically, that will be an occupation in which the individual is now occupied or has recently been occupied if he/she is now unemployed. Optionally, the individual may enter additional occupations that he/she holds or may have held in the past.

The Work History also requests entries for the dates at which the individual began to work in each occupation listed (“Begin date”). If the individual is no longer employed in the occupation, then the Work History also includes the date at which employment in that occupation ceased (“Stop date”). The Begin and Stop dates must include, at a minimum, the year in which employment in the occupation began and ceased (if it has ceased). It may also include the day and month for each.

Application Step 2: Compute the Time Elapsed

The algorithm next computes the Time Elapsed for this individual since employment ceased in each occupation listed in the work history.

Denote as follows:

The algorithm next computes the Duration that the individual was on the job for each occupation in the work history.

Denote Duration on the job for occupation “p” as Dp
Then, Dp=Sp−Bp
Application Step 4: Retrieve the Data Values

Look up from the O*NET database the Data Values for each element of all descriptors for each occupation the individual's Work History.

For example, the O*NET original “Level” Data Value for Skills element “Judgment and Decision Making” for the occupation “Chief Executives” (Code 11-1011.00) is 5.625.

Standardized as described earlier in this document, that score becomes 80.36. Comparable Data Values would be looked up for each of the other 118 elements shown in the O*NET16 database for this occupation. The same would be done for each occupation in the individual's Work History.

Application Step 5: Apply the Decay Factors

Apply the Decay Factors to the Data Values of each Scale ID score for each element in each occupation in the Work History to produce the Raw Decayed scores.

For every Data Value for each element in each occupation included in the Work History, this is done by looking up the previously computed and stored value for Elsls(T) where T is set equal to Ep. That looked-up number is the percentage of the original O*NET Data Value (ODV) lost due to decay. The amount of that loss is Els times ODV and that loss is symbolized as LDV.

The result of applying the Decay Factors is a vector “R” containing LDVs for every element in each occupation in the individual's Work History. For example, if the characteristics being considered included only Knowledge, Skills and Abilities and only “Level” Data Values were being decayed, then the vector R would include 119 LDVs.

Application Step 6: Apply the Restore Factors to Produce a Set (Vector) of Net Adjusted Data Values.

Apply the Restore Factors to the LDVs scores to determine how much of the “decay” should be “restored” due to the individual worker's longevity in the job in each occupation. For every Data Value of each Scale ID for each element in each occupation included in the Work History, this is done by looking up the previously computed and stored value for Rls=gls(V) where V is set equal to Dp and adjusting the Raw Decayed Score to produce the Net Adjusted Data Value (NADV) according to the following equation:
NADV=ODV−LDV(1−Rls)

The NADVs comprise a vector N. Continuing our previous example, if the characteristics being considered included only Knowledge, Skills and Abilities and only “Level” Data Values were being decayed, then the vector N would include 119 NADVs. After this step is completed for each occupation, the computed values of the NADVs are then stored in TORQ's computerized database.

Application Step 7: Select the Maximum Values of the NAVDs

At this point, the TORQ computerized database has a set of NADV vectors, each containing the Net Adjusted Data Values for each element in each occupation included in the Work History.

The final step in preparing the COP for an individual is to select the maximum NAVD for each element. That set of maximum scores comprises the Composite O*NET Profile (COP) for the specific individual whose personal work history has been submitted to the algorithm described herein.

Examples of the Results of Analyses 1 and 2

The impacts of these analyses to the statistical methods described in patent application Ser. No. 12/318,374 may be seen in a set of hypothetical examples comparing three job seekers using the TORQ algorithms. All three have been retail sales clerks. One (called Ann) has held only one job in retail sales and holds it currently. The second (Beth) is also currently a retail sales clerk, but has also recently held jobs as a home health aide, and an occupational therapist aide. The third (Carol) has held the same jobs as Beth, but has been out of the workforce for the past 7 years raising her children. When these employment histories are entered into the TORQ algorithm, the occupations and opportunities suggested by the algorithm vary substantially.

(Recent experience only in retail sales)

Grand
Occupation Title TORQ Median Wage
Retail Salespersons 100
Telemarketers 95 $23,027
Customer Service Representatives 92 $30,696
Counter and Rental Clerks 92 $26,798
Receptionists and Information Clerks 92 $24,747
Telephone Operators 91 $28,193
Mail Clerks and Mail Machine Operators, 91 $24,403
Except Postal Service
Demonstrators and Product Promoters 91 $24,197
Filters applied: [Grand TORQ (80-100)×][Median Wage ($22k-$33k)×]
48 occupations found on the short list

(Recent experience in retail, occupational therapy and home health)

Grand
Occupation Title TORQ Median Wage
Retail Salespersons 100
Skin Care Specialists 97 $29,518
Telemarketers 97 $23,027
Customer Service Representatives 96 $30,696
Counter and Rental Clerks 96 $26,798
Physical Therapist Aides 96 $23,716
Occupational Therapist Aides 96
Weighers, Measurers, Checkers, 95 $29,728
and Samplers, Recordkeeping
Receptionists and Information Clerks 95 $24,747
Filters applied: [Grand TORQ (80-100)×][Median Wage ($22k-$33k)×]
99 Occupations found on the short list

(Experience in retail sales, home health and occupational therapy aide, but out of the workplace for 7 years)

Grand
Occupation Title TORQ Median Wage
Retail Salespersons 87
Mail Clerks and Mail Machine 92 $24,403
Operators, Except Postal Service
Skin Care Specialists 91 $29,518
Weighers, Measurers, Checkers, and 90 $29,728
Samplers, Recordkeeping
Telemarketers 90 $23,027
Customer Service Representatives 89 $30,696
Medical Records and Health 89 $30,638
Information Technicians
Counter and Rental Clerks 89 $26,798
Receptionists and Information Clerks 88 $24,747
Filters applied: [Grand TORQ (80-100)×][Median Wage ($22k-$33k)×]
55 Occupations found on the short list

These examples demonstrate that capturing the Knowledge, Skills and Abilities of multiple past occupations expands the array of occupations that are highly rated by the algorithm as feasible transfers. In addition, capturing time spent in the occupation and time away from the occupation has an impact on the ratings of the feasibility of occupational transfers. Thus, Ann, whose only occupational experience is her current job in retail sales, has fewer highly rated potential transfers compared with Beth, who has recent experience in multiple occupations. On the other hand, Carol, whose job history is identical to Beth's, but who has not performed these occupations for many years, is scored lower by the TORQ algorithm evaluating the feasibility of transfers to other occupations.

In summary the Level values for each element of each occupation may be adjusted based on the length of time the individual worked in the occupation, and by the period of time since the individual last actively performed the occupation to reflect the degree to which the attribute can be assumed still to characterize the individual. For example a computer programmer with five years experience may be assumed to have mastered programming skills (captured in O*NET as the “programming” skill) to a greater degree than one who has been a computer programmer for six months. Similarly, a computer programmer who has not been employed in that occupation for five years may be assumed to have lower levels of programming competency than an individual who is currently employed as a programmer. By selecting the highest value for each adjusted element value after considering these factors relating to time, an individual's overall profile of KSA elements can be assembled. Then, a comparison between an individual's element Level scores and the O*NET element Level scores required for a given occupation, can provide a mathematical evaluation of the feasibility of the individual successfully performing that given occupation.

Analysis 3

A method for the statistical evaluation of groups of workers based on evaluating and combining the skill sets and other relevant attributes of all of the workers in a geographic area, industry, or other grouping, based on the occupations that these workers currently, or most recently held.

The method for statistical evaluation of the Knowledge, Skills and Abilities of individual workers can be applied to groups of workers. If the number of workers currently (or recently) employed in each occupation within any group is known, then the data values for worker attributes derived by the TORQ algorithm for individuals can be summed across any relevant group or sub-group of workers to describe the overall characteristics of that group, and to compare that group with other groups.

As described below, Analysis 3 is applied to data from the US Department of Labor O*NET databases that describe the Knowledge, Skills and Abilities of each occupation for specific geographical subdivisions of the US. The statistical method described in Analysis 3 can be used to evaluate any set of occupational attributes from any source for which there exist data that are specific to a set of occupations, and to evaluate any group or subgroup of workers for whom occupations are known and attribute data values for each occupation are known.

Mathematical Steps for Analysis 3 Applied to O*NET Data

The algorithm described in this claim, when implemented on a computer, describes a Talent Quality Index (TQI) of any state or region (hereafter, “area”) in the United States for which detailed occupational employment data are available. Without limiting the generality of this claim, an example of such a data set would be the annual occupational employment data produced by the Occupational Employment Survey (OES) that is conducted annually by the U.S. Bureau of Labor Statistics (BLS) and/or the state-level agencies responsible for the collection of labor market information (LMI). Once computed, an area's TQI can be the basis for computing several relevant comparisons. Examples of these comparisons, without limiting the generality of the claim, include:

Additionally covered by this claim is the ranking of areas within a set of areas according to their TQIs. Thus, without limiting the generality of the claim, all of the states can be ranked according to their TQIs. The same is true of Metropolitan Statistical Areas (MSAs) as defined by the U.S. Census Bureau.

The data necessary for the computation of the TQI of any area are, in addition to detailed occupational data as specified above, a set of descriptors of qualitative requirements or desirable characteristics to match each of the occupations entering into the TQI calculation. An example of such a set of descriptors, without limiting the generality of this claim, would be the Level scores for Knowledge, Skills, and Abilities that are provided for each occupation in the O*NET™ database.

A Concrete Illustration of the TQI Algorithm

To provide concrete illustration of the TQI algorithm, but without limiting the generality of the claim, here is a descriptive example of the TQI algorithm that is based on data contained in the O*NET database and the OES data from the BLS.

The Procedure and Algorithm for Computing the TQI

Terminology:

For the United States as a whole (“the nation”) in year “y” there are employment data on “ynu” detailed occupations. Then let:

Each occupation in the OES databases for all areas is coded according to a common coding system, the “Standard Occupational Code” (SOC).

For most occupations in the O*NET database, there exist two “Data Values” for each element of Knowledge, Skills and Abilities. These are:

All Data Values are positive real numbers.

Step 1: Compute the Weighted KSA Average for the United States

OCC Code OCC Title Group TOT EMP
11-1011 Chief Executives 273,500
11-1021 General and Operations 1,708,080  
Managers
11-1031 Legislators  65,710
11-2011 Advertising and Promotions  32,240
Managers
11-2021 Marketing Managers 164,590

Compute the “weighted average” of each element “l” of the descriptors Knowledge, Skills and Abilities for each sub-national area “j” in a manner similar to that just described for the nation. That is by multiplying the Data Value for element “l” in each occupation in area “j” by the number of persons employed in each of the occupations in area “j”, summing those products, and then dividing that sum by the total number of persons employed in all those occupations in area “j”. Symbolically, for each,
(WA)ly,j=[ΣiA,j(Eiy,j×Lli)÷ΣiA,j(Eiy,j]

where (A,j)=yam (as previously described) for the area “j”, i.e., the number of detailed occupations in the OES table for area “j” of the particular year of OES (or similar data from state LMI agencies or private sources) being used. That number varies from area to area and may vary from year to year for any given area.

When this computation is completed for multiple areas and all elements, the results comprise a matrix of weighted averages of all the elements in the descriptors Knowledge, Skills and Abilities for each of those multiple areas. That matrix would be of dimension K×L where K denotes the number of areas and L denotes the number of elements (119 in O*NET 16). Currently the OMB and Census Bureau number 362 MSAs and 577 Micropolitan Areas. This claim covers not only these areas but also any other geographical area for which detailed occupational data have been available, are available now or may become available in the future.

Step 3: Compute the Talent Quality Index for One or More of the Sub-National Areas.

The final step in computing the TQI for any given area j in a given year is to divide the weighted averages of all KSA elements in that area by the comparable weighted average of the nation as a whole. Symbolically, that is
(TQI)j,ly=(WA)j,ly,a÷(WA)ly,u.
Summary of TQI Analysis Steps:

Analytically, the TQI is useful in two main ways:

At its core, TORQ's Talent Quality Index (TQI) is a variation on what is commonly known as “Location Quotient Analysis” (or “LQA”). LQA is commonly used in regional economics to explicate the relative concentration of various industries in some particular area. TORQ's TQI redirects the analysis to focus on the relative concentration of various workforce attributes (rlkεRk) in each region. TORQ's proprietary TQI algorithm presently operates with jurisdictional employment data together with O*NET KSA data in the following manner:

Posit that there are n occupations in U (the entire nation) among which all workers are distributed such that each worker is counted in one and only one occupation. Suppose, further, that there exist proper subsets of those occupations in all areas of interest (states, metro area, etc.).

Q k j = i = 1 i = n [ ( V ] k i · S j i ) ÷ i = 1 i = n [ ( V ] k i · U i )

The table below summarizes an analysis of nine metropolitan areas using the TORQ Analysis 3 algorithm described above. It describes the set of Knowledge, Skills and Abilities of each metropolitan area compared to the set of Knowledge, Skills and Abilities required of workers in manufacturing industries. The table summarizes and ranks the workforces of each metro area based on whether its workforce is better or worse matched to the optimum set of Knowledge, Skills and Abilities needed in manufacturing.

Abilities Skills Knowledge Grand
Metro Area TORQ TORQ TORQ TORQ
Evansville, IN-KY 97 94 88 93
Rockford, IL 96 93 88 92
Green Bay, WI 96 93 86 92
Davenport-Moline-Rock 95 92 86 91
Island, IA-IL
Peoria, IL 94 90 82 89
Champaign-Urbana, IL 93 90 80 88
San Jose-Sunnyvale-Santa 90 86 86 87
Clara, CA
Bloomington-Normal, IL 91 86 82 86
Springfield, IL 92 87 78 86
NB: The measures of congruence are based on the TORQ ™ score of each region's workforce versus the target industry. TORQ ™ is a proprietary product of Workforce Associates, Inc.

By computing the total attribute values for populations, it is also possible to derive the deviations from these values that characterize subsets of these populations, based on the incidence of specific individual attributes (e.g., nursing skills) or groups of attributes (e.g., mathematical knowledge).

For example, mathematical summaries of the attributes of groups of workers or jobs may be used to:

TORQ is all about “transferability.” Here “transferability” is taken to be the ease (or difficulty) that a worker who is fully and exactly competent in one occupation (occupation “A”) would experience if he/she were to “transfer” to work in another occupation (occupation “B”). Here, both occupations “A” and “B” can be any two among a set of occupations (the set “O”) for which quantitative data exist describing the common requirements (the set “R”) for all occupations in O. Each member of R (i.e., RkεR) may contain a sub-set rikεRk of “elements” that comprise more granular measures of worker attributes. The TORQ algorithm juxtaposes the aforementioned data on all elements of R for each and every pair of occupations (AεO and BεO) to produce:

G AB = ( 1 n w j s AB j ) ÷ n

These may include for each of the occupations in O:

The identification of significant “gaps” can identify specific elements among the requirements that warrant special attention and/or assessment in the cases of specific individuals. Similarly, Gap Analysis can point up areas of deficiency which may be amenable to additional training and/or education.

General Algorithm for Computing the Mini-TORQ Scores and then the Grand TORQ Score

let the number of occupations in the O*NET database be denoted by the letter “m.”

These scores are positive real numbers.

Fundamental to all TORQ computations are two types of vector multiplications:

G i a = TT i a - FT i a = ( t I i a * t I i a ) - ( f I i a * t I i a ) .

i = 1 n G i a > 0 G i a = i = 1 n > 0 [ ( t V i a * t I i a ) - ( f V i a * t I i a ) ]

The step of aggregating the resulting values comprises computing the value of the Level times the value of the Importance of each worker attribute, and comparing these computed products for each attribute between any pair of occupations. The differences between occupations for these computed products for each attribute, which could be called skill gaps, are summed for all attributes of any two occupations to produce a single value summarizing the total difference between the sums of all the computed products, provided that each difference for two computed products for a given attribute is only considered and added to the sum of the gaps between any two occupations to the extent that the computed product for the target occupation exceeds the computed product of the source occupation. This method of ignoring higher source computed product values prevents “over-qualification” on one attribute from compensating for under-qualification on another.

A graphical representation of this method describes the area of skill gap under the curve of the attribute values of the target occupation. Thus in FIG. 7, if the Series 1 line represented the attribute scores of the source occupation, and the Series 2 line represented the attribute scores of the target occupation, the sum of the gaps number 1-4 between the Series 1 line and the Series 2 line would be the total skill gap. If the transition were from the Series 2 occupation to the Series 1 occupation, gaps 5 and 6 would be summed to represent the total skill gap between the red source occupation and the blue target occupation.

This type of gap analysis is an important supplement to the use of correlation coefficients, because it reflects more accurately the difficulty of acquiring more advanced skills in occupations that may have similar patterns of skills. For example, a doctor and a nurse may have highly correlated sets of Knowledge and Abilities, but the levels of each attribute may vary greatly. So a pure correlation based analysis of the skills required to move from being a nurse to being a doctor might suggest a very easy transition. But in fact, while it is generally feasible for a doctor to become a nurse, the opposite transition may require many additional years of study and certification, as shown by gap analysis.

f W a t = i = 1 n G i a > 0 G i a / i = 1 i = n TT i a

Where xa and ya are both ≧0 and ≦1 but (xa+ya)=1.

This section describes the Rapid Job Profiling Tool (“RJPT).

Background:

A variety of purposes, including the web-based TORQ™ applications, require a comprehensive description of the attributes needed by a worker to fulfill the requirements of an occupation or job (the “Target Job). Such a description is termed a “Profile.” A profile consist of a set of “Descriptors.” Such a Descriptor could, for example, include the Knowledge, Skills and Abilities (the “KSAs”) or other competencies or capabilities required of a worker who is qualified to fulfill a particular job or an occupation.

Definitions:

Job: A specific group of homogeneous tasks related by similarity of functions. Typically a job describes a set of tasks or work required by a specific employer at a given time and place. Example of a Job: A Maintenance Technician employed by Target who performs preventative maintenance and necessary repairs to maintain operation of conveyors and sorter equipment and “Red Tag” down equipment as necessary involving 3-phase 480 volt and industrial electrical systems, motor controls and related electronic equipment. Also organizes a neat maintenance shop and may perform carpentry work as required. Source: Job posting by Target Careers on Mar. 5, 2013 for work in Midlothian, Tex.

Occupation: A generic category of relatively similar jobs. An occupation may subsume many specific jobs. Example of an Occupation: Maintenance Workers, Machinery (O*NET-SOC Code 49-9043.00).

Descriptor: A broad category of attributes required in some degree by a job or an occupation. Examples of Descriptors: Knowledge, Skills, Abilities (commonly denoted as KSAs). In specific circumstances or taxonomies and for specific jobs or occupations, there may be many other descriptors.

Element: One of possibly several specific attributes comprising a descriptor. Example of an Element: The ability to listen to and understand information and ideas presented through spoken words and sentences. (Within the O*NET lexicon, that Ability element is termed “Oral Comprehension” and bears the O*Net Element ID of 1.A.1.a.1.

Level: A numeric score denoting the degree of proficiency or capability in a specific descriptor that a worker needs to have in order to perform a job or occupation. The Level score often but not necessarily lies in the interval 0 to 100 where a lower score denotes a lower degree of proficiency/capability and a higher score indicates a greater degree.

Importance: A numeric score denoting the degree of importance of a specific descriptor that a worker needs to have in order to perform a job or occupation. The Importance score often but not necessarily lies in the interval 0 to 100 where a lower score denotes a lower coefficient of importance and a higher score indicates a higher coefficient of importance.

Job Profile: An assembly of: (i) A general description of a job or occupation including the responsibilities and requirements thereof. (ii) A specification of the appropriate Descriptors and their Elements appropriate of the job or occupation together with the Level and Importance scores of those Elements.

Target Job: A job or occupation for which a job profile is to be developed.

Job Profiler: (“Profiler”): A person who undertakes the senior responsibility for developing and coordinating the development of a Job Profile for a given Target Job.

Job Profiling Exercise: The set of activities to be carried out in the process of developing a Job Profile for a Target Job. The RJPT described in this document is a unique and proprietary methodology for conducting a Job Profiling Exercise.

Reference Occupation: A job or occupation that is similar in some important respects to the Target Job.

RJPT Database: A set of data, normally but not necessarily residing in and retrievable from a computer or other electronic memory device and used by the RJPT in the type of Job Profiling Exercise described herein. Such a database includes, among other items of data, the previously prepared Job Profiles of a set of Jobs which may be quite large in number. Example of a RJPT Database: Any of the databases, including the most recent version, that form part of the O*NET-SOC Taxonomy. For details on that Taxonomy as it exists at the time of this writing, please see “The O*NET-SOC Taxonomy.” Other examples or illustrations of an RJPT Database would be any extension or modification of that included in the O*NET-SOC Taxonomy, or the ACT® Job-Pro® Database, or any other set of Job Profiles developed as part of an employer's or other profiling efforts. The distinguishing characteristic of an RJPT Database is that it should contain Job Profiles of all the Jobs contained therein.

Subject Matter Expert (“SME”): A person with a deep understanding of the tasks, responsibilities, and other requirements of a Target Job that is to be profiled using the RJPT.

SME Focus Group: One or more SMEs that have been chosen and recruited, typically by the Job Profiler, for the purpose of participating in a Job Profiling Exercise. Such a SME Focus Group may accomplish its work by meeting together with the Job Profiler in close physical proximity or via electronic connection. The Group may work with the Job Profiler collectively, or individually ad seriatim, or in any other combination depending of their own locations and the work plan of the Job Profiler.

Task: A detailed description of the physical and/or mental work or efforts specific to the Target Job or any other Job.

Task List: A complication of all the Tasks involved in performing a specific Target Job or any other Job.

Creating a Job Profile with the RJPT:

This section describes and illustrates the procedure to be followed in performing a Job Profiling Exercise for a specific Target Job while using the RJPT. The distinguishing characteristic of the RJPT is that it proceeds expeditiously and without the necessity of detailed specification of either Tasks or a Task List or the performance of any Task Analysis whatsoever. Conventional methods of job profiling (e.g., that method specified by ACT WorkKeys® job analysis system) include a comprehensive procedure of Task Analysis. Performing such a Task Analysis or otherwise preparing a Task List typically is very labor intensive, time consuming and expensive. The value and unique contribution of the RJPT is that it obviates the necessity of performing such intermediate steps as preparing a Task List and/or a Task Analysis. Meanwhile, using the RJPT results rapidly in a high-quality Job Profile.

The RJPT Procedure:

The RJPT Procedure is illustrated graphically by FIG. 1, TORQ's Rapid Job Profiling Tool that appears on the next page. The following paragraphs provide explanations of each of the steps that are denoted by numbered boxes in FIG. 1.

An Example of the RJPT in Action

Background: Many veterans and military service personnel need assistance in finding appropriate civilian employment once their military service has ended. The on-line computerized TORQ applications are widely used to provide such assistance. The versions of TORQ applications that exist as of the time of this writing employ the most recent O*NET database at the core of the applications.

Regrettably, such assistance cannot be provided to many veterans or service personnel whose military experience has been in the most numerous and basic military occupations. The reason for that is as follows: While the O*NET database includes codes and names for the military “Combat Occupations” (See Table 1), that database unfortunately contains no scores for the Descriptor (i.e., KSA) Elements for any of those Combat Occupations. That obviously greatly reduces the help that the TORQ applications can provide to this important class of veterans and about-to-be discharged soldiers.

TABLE 1
O*NET Code Combat Occupation Name per O*NET
55-1011.00 Air Crew Officers
55-1012.00 Aircraft Launch and Recovery Officers
55-1013.00 Armored Assault Vehicle Officers
55-1014.00 Artillery and Missile Officers
55-1015.00 Command and Control Center Officers
55-1016.00 Infantry Officers
55-1017.00 Special Forces Officers
55-1019.00 Military Officer Special and Tactical
Operations Leaders, All Other
55-2011.00 First-Line Supervisors of Air Crew Members
55-2012.00 First-Line Supervisors of Weapons Specialists/
Crew Members
55-2013.00 First-Line Supervisors of All Other Tactical
Operations Specialists
55-3011.00 Air Crew Members
55-3012.00 Aircraft Launch and Recovery Specialists
55-3013.00 Armored Assault Vehicle Crew Members
55-3014.00 Artillery and Missile Crew Members
55-3015.00 Command and Control Center Specialists
55-3016.00 Infantry
55-3017.00 Radar and Sonar Technicians
55-3018.00 Special Forces
55-3019.00 Military Enlisted Tactical Operations and Air/
Weapons Specialists and Crew Members, All Other

To remedy the unfortunate circumstance just described, Workforce Associates, Inc., in collaboration with a group of recently retired senior non-commissioned officers, has undertaken a program to determine appropriate scores for all relevant Elements of the O*NET Descriptors (i.e., the KSAs) so that the TORQ applications can be used to assist soldiers and veterans whose military experience has been in the Combat Occupations. The example adduced here is a description of how the RJPT has been and is being used to profile those Combat Operations.

Elements of the Example:

Dates of this (the first) Job Profiling Exercise: Mar. 23, 2012 and Apr. 4, 2012.

Occupation: O*NET Code: 55-3016.00, Infantry.

Target Job: Army Infantryman, MOS 11B.

Job Profiler: Two senior staff members of Workforce Associates, Inc.

Descriptor: Abilities

Element: The Level score of O*NET Code: 1.A.2.b.2, denoting “Multilimb Coordination” defined as the ability to coordinate two or more limbs (for example, two arms, two legs, or one leg and one arm) while sitting, standing, or lying down. It does not involve performing the activities while the whole body is in motion. This Level score and all others chosen for the Elements of this Target Job were scored on a scale from zero (no competence required) to 100 (highest possible level of competence required).

Subject Matter Experts: Recently discharged Army non-commissioned officers.

SME Focus Group: Four recently discharged Army Master Sergeants residing in Massachusetts and Pennsylvania.

Job Profiling Exercise: To create a Job Profile of Army Infantryman, MOS 11B. This Exercise was conducted with members of the SME Focus Group and the Job Profiler sharing a conference call telephone connection and via a web-hosted service that enabled the Job Profiler to share his computer screen and to “meet” remotely with the members of the SME Focus Group.

Reference Occupations: The Job Profiler and members of the SME Focus Group determined that these civilian occupations were similar to the Target Job, “Army Infantryman 11B” in some, but not all, important respects. The selected Reference Occupations and their Level scores for Multlimb Coordination (code 1.A.2.b.2) are shown in Table 2. In this Job Profiling Exercise as it was actually conducted, the members of the SME Focus Group were also shown, for their consideration and comparative purposes, a complete list of Level scores for Multilimb Coordination for more than 850 occupations. Because of limitation of space, that complete list is not shown here in this Example.

TABLE 2
Selected Reference Occupations, their O*NET
Codes and Their Level Scores for Multilimb Coordination
Level
Score for Multilimb
Element Code Element Name Coordination
33-2011.02 Forest Firefighters 57
33-3051.01 Police Patrol Officers 46
45-3021.00 Hunters and Trappers 45
47-2061.00 Construction Laborers 48
47-5012.00 Rotary Drill Operators, Oil 50
and Gas
51-3023.00 Slaughterers and Meat 38
Packers
53-7062.00 Laborers and Freight, 50
Stock, and Material
Movers, Hand
27-2021.00 Athletes and Sports 46
Competitors
29-2041.00 Emergency Medical 50
Technicians and
Paramedics

Consensus of the SME Focus Group: After brisk discussion, the SME Focus Group arrived at a consensus of what should be the Level score for Multilimb Coordination for the Target Job. That score was set at the value of 54 which was above the Levels of all the Reference Occupations except for Forest Firefighters.

Completion of the Job Profiling Exercise: The process just described (and illustrated in FIG. 1) was conducted for 120 chosen Elements of all of the three chosen Descriptors (i.e., Knowledge, Skills and Abilities) for the Target Job, “Army Infantryman 11B.” Table 3, below, displays a few of the scores for Abilities Elements.

TABLE 3
A Small Portion of the Job Profile for MOS 11B, Army Infantryman as Developed Using the Rapid Job
Profiling Tool in the Example Adduced Here. There are 120 Elements in this Profile
Element Code 1.A.2.c.1 1.A.2.c.2 1.A.2.c.3 1.A.3.a.1 1.A.3.a.2 1.A.3.a.3 1.A.3.a.4 1.A.3.b.1
55- Occupation: Reaction Wrist-Finger Speed of Limb Static Explosive Dynamic Trunk
3016.01 Army Infantry Time Speed Movement Strength Strength Strength Strength Stamina
Army Target Level 70 35 47 58 50 61 58 56
MOS Job: 11B Importance 75 41 54 65 53 65 69 69
Infantryman

The RJPT described herein is a very flexible and powerful tool that may be used to develop Job Profiles for any number and types of jobs extending from broad occupational categories to jobs that are very specific to individual employers at specific places and times.

While illustrative embodiments of the invention have been described herein, the present invention is not limited to the various preferred embodiments described herein, but includes any and all embodiments having equivalent elements, modifications, omissions, combinations (e.g., of aspects across various embodiments), adaptations and/or alterations as would be appreciated by those in the art based on the present disclosure. The limitations in the claims are to be interpreted broadly based on the language employed in the claims and not limited to examples described in the present specification.

Judy, Richard W.

Patent Priority Assignee Title
10346804, Apr 04 2014 Korn Ferry Determining job applicant fit score
10521750, Mar 03 2014 Career Analytics Network, Inc. Computer implemented method for personal attribute valuation and matching with occupations and organizations
11163807, Jun 05 2019 PREMIER HEALTHCARE SOLUTIONS, INC System for data structure clustering based on variation in data attribute performance
11188834, Oct 31 2016 Microsoft Technology Licensing, LLC Machine learning technique for recommendation of courses in a social networking service based on confidential data
11657357, Mar 03 2014 Career Analytics Network, Inc. Computer implemented method for personal attribute valuation and matching with occupations and organizations
11681730, Jun 05 2019 Premier Healthcare Solutions, Inc. System for data structure clustering based on variation in data attribute performance
Patent Priority Assignee Title
5416694, Feb 28 1994 HE HOLDINGS, INC , A DELAWARE CORP ; Raytheon Company Computer-based data integration and management process for workforce planning and occupational readjustment
7310626, Aug 03 2000 CADIENT LLC Electronic employee selection systems and methods
7480659, Oct 18 2004 Chmura Economics & Analytics, LLC; CHMURA ECONOMICS & ANALYTICS System and method for managing economic development, workforce development and education information
7593860, Sep 12 2005 International Business Machines Corporation Career analysis method and system
7805382, Apr 11 2005 CITIZENS BANK OF PENNSYLVANIA Match-based employment system and method
8195657, Jan 09 2006 MONSTER WORLDWIDE, INC Apparatuses, systems and methods for data entry correlation
20020046199,
20020055867,
20020077884,
20030182178,
20050267934,
20050273350,
20070059671,
20070294125,
20080027771,
20080059523,
20080065467,
20080086366,
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